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761-780hit(8214hit)

  • Improving Seeded k-Means Clustering with Deviation- and Entropy-Based Term Weightings

    Uraiwan BUATOOM  Waree KONGPRAWECHNON  Thanaruk THEERAMUNKONG  

     
    PAPER

      Pubricized:
    2020/01/08
      Vol:
    E103-D No:4
      Page(s):
    748-758

    The outcome of document clustering depends on the scheme used to assign a weight to each term in a document. While recent works have tried to use distributions related to class to enhance the discrimination ability. It is worth exploring whether a deviation approach or an entropy approach is more effective. This paper presents a comparison between deviation-based distribution and entropy-based distribution as constraints in term weighting. In addition, their potential combinations are investigated to find optimal solutions in guiding the clustering process. In the experiments, the seeded k-means method is used for clustering, and the performances of deviation-based, entropy-based, and hybrid approaches, are analyzed using two English and one Thai text datasets. The result showed that the deviation-based distribution outperformed the entropy-based distribution, and a suitable combination of these distributions increases the clustering accuracy by 10%.

  • Design and Implementation of 10Gbps Software PPPoE Router for IoT Smart Home Network

    Ping DU  Akihiro NAKAO  Satoshi MIKI  Makoto INOUE  

     
    PAPER-Network

      Pubricized:
    2019/10/08
      Vol:
    E103-B No:4
      Page(s):
    422-430

    In the coming smart-home era, more and more household electrical appliances are generating more and more sensor data and transmitting them over the home networks, which are often connected to Internet through Point-to-Point Protocol over Ethernet (PPPoE) for desirable authentication and accounting. However, according to our knowledge, high-speed commercial home PPPoE router is still absent for a home network environment. In this paper, we first introduce and evaluate our programmable platform FLARE-DPDK for ease of programming network functions. Then we introduce our effort to build a compact 10Gbps software FLARE PPPoE router on a commercial mini-PC. In our implementation, the control plane is implemented with Linux PPPoE software for authentication-like signaling control. The data plane is implemented over FLARE-DPDK platform, where we get packets from physical network interfaces directly bypassing Linux kernel and distribute packets to multiple CPU cores for data processing in parallel. We verify our software PPPoE router in both lab and production network environment. The experimental results show that our FLARE software PPPoE router can achieve much higher throughput than a commercial PPPoE router tested in a production environment.

  • Switched Pinning Control for Merging and Splitting Maneuvers of Vehicle Platoons Open Access

    Takuma WAKASA  Yoshiki NAGATANI  Kenji SAWADA  Seiichi SHIN  

     
    PAPER-Systems and Control

      Vol:
    E103-A No:4
      Page(s):
    657-667

    This paper considers a velocity control problem for merging and splitting maneuvers of vehicle platoons. In this paper, an external device sends velocity commands to some vehicles in the platoon, and the others adjust their velocities autonomously. The former is pinning control, and the latter is consensus control in multi-agent control. We propose a switched pinning control algorithm. Our algorithm consists of three sub-methods. The first is an optimal switching method of pinning agents based on an MLD (Mixed Logical Dynamical) system model and MPC (Model Predictive Control). The second is a representation method for dynamical platoon formation with merging and splitting maneuver. The platoon formation follows the positional relation between vehicles or the formation demand from the external device. The third is a switching reduction method by setting a cost function that penalizes the switching of the pinning agents in the steady-state. Our proposed algorithm enables us to improve the consensus speed. Moreover, our algorithm can regroup the platoons to the arbitrary platoons and control the velocities of the multiple vehicle platoons to each target value.

  • Against Insider Threats with Hybrid Anomaly Detection with Local-Feature Autoencoder and Global Statistics (LAGS)

    Minhae JANG  Yeonseung RYU  Jik-Soo KIM  Minkyoung CHO  

     
    LETTER-Dependable Computing

      Pubricized:
    2020/01/10
      Vol:
    E103-D No:4
      Page(s):
    888-891

    Internal user threats such as information leakage or system destruction can cause significant damage to the organization, however it is very difficult to prevent or detect this attack in advance. In this paper, we propose an anomaly-based insider threat detection method with local features and global statistics over the assumption that a user shows different patterns from regular behaviors during harmful actions. We experimentally show that our detection mechanism can achieve superior performance compared to the state of the art approaches for CMU CERT dataset.

  • The Effect of Axis-Wise Triaxial Acceleration Data Fusion in CNN-Based Human Activity Recognition

    Xinxin HAN  Jian YE  Jia LUO  Haiying ZHOU  

     
    PAPER-Artificial Intelligence, Data Mining

      Pubricized:
    2020/01/14
      Vol:
    E103-D No:4
      Page(s):
    813-824

    The triaxial accelerometer is one of the most important sensors for human activity recognition (HAR). It has been observed that the relations between the axes of a triaxial accelerometer plays a significant role in improving the accuracy of activity recognition. However, the existing research rarely focuses on these relations, but rather on the fusion of multiple sensors. In this paper, we propose a data fusion-based convolutional neural network (CNN) approach to effectively use the relations between the axes. We design a single-channel data fusion method and multichannel data fusion method in consideration of the diversified formats of sensor data. After obtaining the fused data, a CNN is used to extract the features and perform classification. The experiments show that the proposed approach has an advantage over the CNN in accuracy. Moreover, the single-channel model achieves an accuracy of 98.83% with the WISDM dataset, which is higher than that of state-of-the-art methods.

  • Efficient Computation of Boomerang Connection Probability for ARX-Based Block Ciphers with Application to SPECK and LEA

    Dongyeong KIM  Dawoon KWON  Junghwan SONG  

     
    PAPER-Cryptography and Information Security

      Vol:
    E103-A No:4
      Page(s):
    677-685

    The boomerang connectivity table (BCT) was introduced by C. Cid et al. Using the BCT, for SPN block cipher, the dependency between sub-ciphers in boomerang structure can be computed more precisely. However, the existing method to generate BCT is difficult to be applied to the ARX-based cipher, because of the huge domain size. In this paper, we show a method to compute the dependency between sub-ciphers in boomerang structure for modular addition. Using bit relation in modular addition, we compute the dependency sequentially in bitwise. And using this method, we find boomerang characteristics and amplified boomerang characteristics for the ARX-based ciphers LEA and SPECK. For LEA-128, we find a reduced 15-round boomerang characteristic and reduced 16-round amplified boomerang characteristic which is two rounds longer than previous boomerang characteristic. Also for SPECK64/128, we find a reduced 13-round amplified boomerang characteristic which is one round longer than previous rectangle characteristic.

  • Social Behavior Analysis and Thai Mental Health Questionnaire (TMHQ) Optimization for Depression Detection System

    Konlakorn WONGAPTIKASEREE  Panida YOMABOOT  Kantinee KATCHAPAKIRIN  Yongyos KAEWPITAKKUN  

     
    PAPER

      Pubricized:
    2020/01/21
      Vol:
    E103-D No:4
      Page(s):
    771-778

    Depression is a major mental health problem in Thailand. The depression rates have been rapidly increasing. Over 1.17 million Thai people suffer from this mental illness. It is important that a reliable depression screening tool is made available so that depression could be early detected. Given Facebook is the most popular social network platform in Thailand, it could be a large-scale resource to develop a depression detection tool. This research employs techniques to develop a depression detection algorithm for the Thai language on Facebook where people use it as a tool for sharing opinions, feelings, and life events. To establish the reliable result, Thai Mental Health Questionnaire (TMHQ), a standardized psychological inventory that measures major mental health problems including depression. Depression scale of the TMHQ comprises of 20 items, is used as the baseline for concluding the result. Furthermore, this study also aims to do factor analysis and reduce the number of depression items. Data was collected from over 600 Facebook users. Descriptive statistics, Exploratory Factor Analysis, and Internal consistency were conducted. Results provide the optimized version of the TMHQ-depression that contain 9 items. The 9 items are categorized into four factors which are suicidal ideation, sleep problems, anhedonic, and guilty feelings. Internal consistency analysis shows that this short version of the TMHQ-depression has good to excellent reliability (Cronbach's alpha >.80). The findings suggest that this optimized TMHQ-depression questionnaire holds a good psychometric property and can be used for depression detection.

  • The Role of Accent and Grouping Structures in Estimating Musical Meter

    Han-Ying LIN  Chien-Chieh HUANG  Wen-Whei CHANG  Jen-Tzung CHIEN  

     
    PAPER-Engineering Acoustics

      Vol:
    E103-A No:4
      Page(s):
    649-656

    This study presents a new method to exploit both accent and grouping structures of music in meter estimation. The system starts by extracting autocorrelation-based features that characterize accent periodicities. Based on the local boundary detection model, we construct grouping features that serve as additional cues for inferring meter. After the feature extraction, a multi-layer cascaded classifier based on neural network is incorporated to derive the most likely meter of input melody. Experiments on 7351 folk melodies in MIDI files indicate that the proposed system achieves an accuracy of 95.76% for classification into nine categories of meters.

  • Auction-Based Resource Allocation for Mobile Edge Computing Networks

    Ben LIU  Ding XU  

     
    LETTER-Communication Theory and Signals

      Vol:
    E103-A No:4
      Page(s):
    718-722

    Mobile edge computing (MEC) is a new computing paradigm, which provides computing support for resource-constrained user equipments (UEs). In this letter, we design an effective incentive framework to encourage MEC operators to provide computing service for UEs. The problem of jointly allocating communication and computing resources to maximize the revenue of MEC operators is studied. Based on auction theory, we design a multi-round iterative auction (MRIA) algorithm to solve the problem. Extensive simulations have been conducted to evaluate the performance of the proposed algorithm and it is shown that the proposed algorithm can significantly improve the overall revenue of MEC operators.

  • Service Chain Construction Algorithm for Maximizing Total Data Throughput in Resource-Constrained NFV Environments

    Daisuke AMAYA  Shunsuke HOMMA  Takuji TACHIBANA  

     
    PAPER

      Pubricized:
    2019/10/08
      Vol:
    E103-B No:4
      Page(s):
    335-346

    In resource-constrained network function virtualization (NFV) environments, it is expected that data throughput for service chains is maintained by using virtual network functions (VNFs) effectively. In this paper, we formulate an optimization problem for maximizing the total data throughput in resource-constrained NFV environments. Moreover, based on our formulated optimization problem, we propose a heuristic service chain construction algorithm for maximizing the total data throughput. This algorithm also determines the placement of VNFs, the amount of resources for each VNF, and the transmission route for each service chain. It is expected that the heuristic algorithm can construct service chains more quickly than the meta-heuristic algorithm. We evaluate the performance of the proposed methods with simulations, and we investigate the effectiveness of our proposed heuristic algorithm through a performance comparison. Numerical examples show that our proposed methods can construct service chains so as to maximize the total data throughput regardless of the number of service chains, the amount of traffic, and network topologies.

  • Mal2d: 2d Based Deep Learning Model for Malware Detection Using Black and White Binary Image

    Minkyoung CHO  Jik-Soo KIM  Jongho SHIN  Incheol SHIN  

     
    LETTER-Artificial Intelligence, Data Mining

      Pubricized:
    2019/12/25
      Vol:
    E103-D No:4
      Page(s):
    896-900

    We propose an effective 2d image based end-to-end deep learning model for malware detection by introducing a black & white embedding to reserve bit information and adapting the convolution architecture. Experimental results show that our proposed scheme can achieve superior performance in both of training and testing data sets compared to well-known image recognition deep learning models (VGG and ResNet).

  • A Deep Neural Network-Based Approach to Finding Similar Code Segments

    Dong Kwan KIM  

     
    LETTER-Software Engineering

      Pubricized:
    2020/01/17
      Vol:
    E103-D No:4
      Page(s):
    874-878

    This paper presents a Siamese architecture model with two identical Convolutional Neural Networks (CNNs) to identify code clones; two code fragments are represented as Abstract Syntax Trees (ASTs), CNN-based subnetworks extract feature vectors from the ASTs of pairwise code fragments, and the output layer produces how similar or dissimilar they are. Experimental results demonstrate that CNN-based feature extraction is effective in detecting code clones at source code or bytecode levels.

  • Predicting Uninterruptible Durations of Office Workers by Using Probabilistic Work Continuance Model

    Shota SHIRATORI  Yuichiro FUJIMOTO  Kinya FUJITA  

     
    PAPER-Human-computer Interaction

      Pubricized:
    2020/01/10
      Vol:
    E103-D No:4
      Page(s):
    838-849

    In order not to disrupt a team member concentrating on his/her own task, the interrupter needs to wait for a proper time. In this research, we examined the feasibility of predicting prospective interruptible times of office workers who use PCs. An analysis of actual working data collected from 13 participants revealed the relationship between uninterruptible durations and four features, i.e. type of application software, rate of PC operation activity, activity ratio between keystrokes and mouse clicks, and switching frequency of application software. On the basis of these results, we developed a probabilistic work continuance model whose probability changes according to the four features. The leave-one-out cross-validation indicated positive correlations between the actual and the predicted durations. The medians of the actual and the predicted durations were 539 s and 519 s. The main contribution of this study is the demonstration of the feasibility to predict uninterruptible durations in an actual working scenario.

  • Latch-Up Immune Bi-Direction ESD Protection Clamp for Push-Pull RF Power Amplifier

    Yibo JIANG  Hui BI  Wei ZHAO  Chen SHI  Xiaolei WANG  

     
    BRIEF PAPER-Semiconductor Materials and Devices

      Pubricized:
    2019/10/09
      Vol:
    E103-C No:4
      Page(s):
    194-196

    For the RF power amplifier, its exposed input and output are susceptible to damage from Electrostatic (ESD) damage. The bi-direction protection is required at the input in push-pull operating mode. In this paper, considering the process compatibility to the power amplifier, cascaded Grounded-gate NMOS (ggNMOS) and Polysilicon diodes (PDIO) are stacked together to form an ESD clamp with forward and reverse protection. Through Transmission line pulse (TLP) and CV measurements, the clamp is demonstrated as latch-up immune and low parasitic capacitance bi-direction ESD protection, with 18.67/17.34V holding voltage (Vhold), 4.6/3.2kV ESD protection voltage (VESD), 0.401/0.415pF parasitic capacitance (CESD) on forward and reverse direction, respectively.

  • Broadband Direction of Arrival Estimation Based on Convolutional Neural Network Open Access

    Wenli ZHU  Min ZHANG  Chenxi WU  Lingqing ZENG  

     
    PAPER-Fundamental Theories for Communications

      Pubricized:
    2019/08/27
      Vol:
    E103-B No:3
      Page(s):
    148-154

    A convolutional neural network (CNN) for broadband direction of arrival (DOA) estimation of far-field electromagnetic signals is presented. The proposed algorithm performs a nonlinear inverse mapping from received signal to angle of arrival. The signal model used for algorithm is based on the circular antenna array geometry, and the phase component extracted from the spatial covariance matrix is used as the input of the CNN network. A CNN model including three convolutional layers is then established to approximate the nonlinear mapping. The performance of the CNN model is evaluated in a noisy environment for various values of signal-to-noise ratio (SNR). The results demonstrate that the proposed CNN model with the phase component of the spatial covariance matrix as the input is able to achieve fast and accurate broadband DOA estimation and attains perfect performance at lower SNR values.

  • ASAN: Self-Attending and Semantic Activating Network towards Better Object Detection

    Xinyu ZHU  Jun ZHANG  Gengsheng CHEN  

     
    PAPER-Image Recognition, Computer Vision

      Pubricized:
    2019/11/25
      Vol:
    E103-D No:3
      Page(s):
    648-659

    Recent top-performing object detectors usually depend on a two-stage approach, which benefits from its region proposal and refining practice but suffers low detection speed. By contrast, one-stage approaches have the advantage of high efficiency while sacrifice their accuracies to some extent. In this paper, we propose a novel single-shot object detection network which inherits the merits of both. Motivated by the idea of semantic enrichment to the convolutional features within a typical deep detector, we propose two novel modules: 1) by modeling the semantic interactions between channels and the long-range dependencies between spatial positions, the self-attending module generates both channel and position attention, and enhance the original convolutional features in a self-guided manner; 2) leveraging the class-discriminative localization ability of classification-trained CNN, the semantic activating module learns a semantic meaningful convolutional response which augments low-level convolutional features with strong class-specific semantic information. The so called self-attending and semantic activating network (ASAN) achieves better accuracy than two-stage methods and is able to fulfil real-time processing. Comprehensive experiments on PASCAL VOC indicates that ASAN achieves state-of-the-art detection performance with high efficiency.

  • Analysis of Antenna Performance Degradation due to Coupled Electromagnetic Interference from Nearby Circuits

    Hosang LEE  Jawad YOUSAF  Kwangho KIM  Seongjin MUN  Chanseok HWANG  Wansoo NAH  

     
    PAPER-Electromagnetic Theory

      Pubricized:
    2019/08/27
      Vol:
    E103-C No:3
      Page(s):
    110-118

    This paper analyzes and compares two methods to estimate electromagnetically coupled noises introduced to an antenna due to the nearby circuits at a circuit design stage. One of them is to estimate the power spectrum, and the other one is to estimate the active S11 parameter at the victim antenna, respectively, and both of them use simulated standard S-parameters for the electromagnetic coupling in the circuit. They also need the assumed or measured excitation of noise sources. To confirm the validness of the two methods, an evaluation board consisting of an antenna and noise sources were designed and fabricated in which voltage controlled oscillator (VCO) chips are placed as noise sources. The generated electromagnetic noises are transferred to an antenna via loop-shaped transmission lines, degrading the performance of the antenna. In this paper, detailed analysis procedures are described using the evaluation board, and it is shown that the two methods are equivalent to each other in terms of the induced voltages in the antenna. Finally, a procedure to estimate antenna performance degradation at the design stage is summarized.

  • Defragmentation with Reroutable Backup Paths in Toggled 1+1 Protection Elastic Optical Networks

    Takaaki SAWA  Fujun HE  Takehiro SATO  Bijoy Chand CHATTERJEE  Eiji OKI  

     
    PAPER-Network Management/Operation

      Pubricized:
    2019/09/03
      Vol:
    E103-B No:3
      Page(s):
    211-223

    This paper proposes a defragmentation scheme using reroutable backup paths in toggled-based quasi 1+1 path protected elastic optical networks (EONs) to improve the efficiency of defragmentation and suppress the fragmentation effect. The proposed scheme can reallocate spectrum slots of backup paths and reroute of backup paths. The path exchange function of the proposed scheme makes the primary paths become the backup state while the backup paths become the primary. This allows utilization of the advantages of defragmentation in both primary and backup paths. We formulate a static spectrum reallocation problem with rerouting (SSRR) in the toggled-based quasi 1+1 path protected EON as an integer linear programming (ILP) problem. The decision version of SSRR is proven to be an NP-complete problem. A heuristic algorithm is introduced to solve the problem for large networks networks where the ILP problem is not tractable. For a dynamic traffic scenario, an approach that suppresses the fragmentation considering rerouting and path exchanging operations is presented. We evaluate the performances of the proposed scheme by comparing it to the conventional scheme in terms of dependencies on node degree, processing time of network operations and interval time between scheduled defragmentations. The numerical results obtained from the performance evaluation indicate that the proposed scheme increases the traffic admissibility compared to the conventional scheme.

  • Malicious Code Detection for Trusted Execution Environment Based on Paillier Homomorphic Encryption Open Access

    Ziwang WANG  Yi ZHUANG  

     
    PAPER-Fundamental Theories for Communications

      Pubricized:
    2019/09/20
      Vol:
    E103-B No:3
      Page(s):
    155-166

    Currently, mobile terminals face serious security threats. A Trusted Execution Environment (TEE) which can provide an isolated execution environment for sensitive workloads, is seen as a trusted relay for providing security services for any mobile application. However, mobile TEE's architecture design and implementation strategy are not unbreakable at present. The existing researches lack of detect mechanisms for attack behaviour and malicious software. This paper proposes a Malicious code Detection scheme for Trusted Execution Environment based on Homomorphic Encryption (HE-TEEMD), which is a novel detection mechanism for data and code in the trusted execution environment. HE-TEEMD uses the Paillier additive homomorphic algorithm to implement the signature matching and transmits the ciphertext information generated in the TEE to the normal world for detection by the homomorphism and randomness of the homomorphic encryption ciphertext. An experiment and security analysis proves that our scheme can achieve malicious code detection in the secure world with minimal cost. Furthermore, evaluation parameters are introduced to address the known plaintext attack problem of privileged users.

  • Outage Performance of Multi-Carrier Relay Selections in Multi-Hop OFDM with Index Modulation

    Pengli YANG  Fuqi MU  

     
    LETTER-Communication Theory and Signals

      Vol:
    E103-A No:3
      Page(s):
    638-642

    In this letter, we adopt two multi-carrier relay selections, i.e., bulk and per-subcarrier (PS), to the multi-hop decode-and-forward relaying orthogonal frequency-division multiplexing with index modulation (OFDM-IM) system. Particularly, in the form of average outage probability (AOP), the influence of joint selection and non-joint selection acting on the last two hops on the system is analyzed. The closed-form expressions of AOPs and the asymptotic AOPs expressions at high signal-to-noise ratio are given and verified by numerical simulations. The results show that both bulk and PS can achieve full diversity order and that PS can provide additional power gain compared to bulk when JS is used. The theoretical analyses in this letter provide an insight into the combination of OFDM-IM and cooperative communication.

761-780hit(8214hit)